BACKGROUND OF THE INVENTION
Technical Field
[0001] The present invention relates to a magnetic resonance imaging (hereinafter, abbreviated
as MRI) apparatus and an analysis technique of measurement data obtained by the MRI
apparatus, and in particular, to an analysis technique of a diffusion tensor image.
Description of the Related Art
[0002] Analyzing a flow of fluid that circulates human brain and body allows obtainment
of effective indicators for diagnosis of various diseases. For example, fluid parameters
such as wall shear stress (WSS), fluid kinetic energy (KE), and kinetic energy loss
(EL), are effective indicators for detecting an abnormal flow of blood or cerebrospinal
fluid, and there are proposed various techniques for measuring and analyzing those
indicators.
[0003] As one of the techniques, the specification of
Japanese Patent No. 6,467,341 (hereinafter, referred to as Patent Document 1) discloses a method that uses the
phase contrast (PC) method of MRI to analyze kinetic energy loss and others, from
obtained measurement data. In the PC method, a gradient pulse for dephasing NMR signals
is combined with a gradient pulse for rephasing, thereby differentiating the phase
between a signal from a stationary portion and a signal from a portion with a flow,
and a velocity of fluid such as blood flow in a desired region is calculated. In the
technique described in Patent Document 1, difference information of adjacent vectors
is calculated from a map of velocity vector values of the fluid obtained by the PC
method (a blood flow vector image having the velocity vector value as a pixel value),
and then using this difference information, EL and others are calculated.
[0004] In addition, imaging methods of MRI that allows fluid observation include diffusion
weighted imaging (DWI) and diffusion tensor imaging (DTI). It is reported in
Magnetic Resonance in Medicine 2021; 86, pp. 1369 to 1382 (hereinafter, referred to as Non-Patent Document) that DTI is a method to show information
representing anisotropy of diffusion for each voxel by a diffusion tensor, from measurement
data obtained by performing DWI using MPG pulses in at least six directions, and this
method is effective for observation of a flow such as pseudo-random flow of cerebrospinal
fluid.
SUMMARY OF THE INVENTION
Technical Problem
[0005] In the PC method, it is required to execute repeatedly a pulse sequence for applying
a rephasing gradient pulse to a dephasing gradient pulse that diffuses the phase,
after a predetermined time interval, so as to acquire a signal. Thus, spatial resolution
of an image is relatively low. Taking the difference between neighboring vectors in
a blood flow vector image having the low spatial resolution may result in that a differential
value of the flow velocity is calculated lower than an actual differential value.
Therefore, there is a possibility that errors in blood flow parameter values such
as EL become larger, because these fluid parameter values are obtained based on thus
calculated differential value of the flow velocity. In particular, when the fluid
velocity is low, such errors are likely to expand.
[0006] An object of the present invention is to provide a technique to accurately calculate
the fluid parameters, using MRI. The present invention also aims at improving accuracy
in the fluid parameter calculation, especially for the fluid at low velocity.
Solution to Problem
[0007] To achieve the objects as described above, the present invention uses flow velocity
information obtained by diffusion tensor imaging and a model of a flow velocity distribution,
to calculate a differential vector of the flow velocity, and then, the fluid parameters
are obtained.
[0008] That is, an MRI apparatus of the present invention comprises a measurement unit configured
to execute a pulse sequence of diffusion-weighted imaging including an MPG pulse to
acquire measurement data, and a calculation unit configured to calculate a pseudo
diffusion tensor having information on a flow velocity and diffusion of fluid within
an examination target, using the measurement data acquired by the measurement unit,
wherein the calculation unit includes a fluid parameter calculator configured to calculate
a fluid parameter other than the pseudo diffusion tensor, using the pseudo diffusion
tensor and an estimation model of an intra-voxel distribution of the flow velocity.
[0009] An image analyzer of the present invention is an independent analyzer having a function
of the calculation unit of the MRI apparatus as described above, comprising a receiving
unit configured to receive the measurement data measured in an MRI apparatus or a
value of the pseudo diffusion tensor calculated from the measurement data, a calculation
unit configured to calculate a fluid parameter using the measurement data or the value
of the pseudo diffusion tensor received by the receiving unit, wherein the calculation
unit includes a fluid parameter calculator configured to calculate the fluid parameter
serving as an indicator that represents a characteristic of a flow of fluid, using
the pseudo diffusion tensor, and an estimation model of a flow velocity distribution.
[0010] Further, the present invention provides a fluid analysis method using a diffusion
tensor image of an examination target containing fluid, obtained by an MRI apparatus,
comprising the following steps, calculating dispersion of a flow velocity of the fluid
using the diffusion tensor image; calculating a differential vector of the flow velocity
using the dispersion and a distribution shape of intra-voxel flow velocity; and calculating
a fluid parameter representing a characteristic of a flow of the fluid, using the
differential vector.
[0011] The present invention provides a novel method of calculating the fluid parameters
from DTI (diffusion tensor imaging), using an estimated distribution of the fluid
in a voxel. The present invention utilizes the flow velocity distribution in the voxel
and avoids calculation errors associated with low resolution, unlike the PC method
using the averaged flow velocity in the voxel and a difference in the flow velocity
between the voxels. Accordingly, it is possible to accurately calculate the fluid
parameter. Particularly for the fluid at low velocity, lowering of calculation accuracy
due to reduction in spatial resolution can be prevented.
BRIEF DESCRIPTION OF THE DRAWINGS
[0012]
FIG. 1 illustrates an overview of an MRI apparatus;
FIG. 2 is a functional block diagram of a calculation unit;
FIG. 3 is a flowchart illustrating a process of a fluid parameter calculator;
FIG. 4 illustrates an example of a pulse sequence used for diffusion tensor imaging;
FIG. 5 illustrates relationships between various flows, and diffusion tensors (DT)
respectively associated therewith;
FIG. 6 illustrates an example of a brain image and its diffusion tensor image;
FIG. 7 schematically illustrates a relationship between a linear flow and a diffusion
gradient;
FIGs. 8A and 8B illustrate examples of an estimation model of a flow velocity distribution;
FIG. 9 schematically illustrates a flow, mixing the linear flow and the diffusion
gradient;
FIG. 10 is a functional block diagram showing an example of the calculation unit according
to a second embodiment;
FIG. 11 is a functional block diagram of the calculation unit according to a third
embodiment; and
FIGs. 12A and 12B each illustrates an example of GUI according to the third embodiment.
DETAILED DESCRIPTION OF THE PREFERRED EMBODIMENTS
[0013] There will now be described embodiments of an MRI apparatus of the present invention
with reference to the accompanying drawings.
[0014] First, a configuration of the MRI apparatus to which the present invention is applied
will be described. As shown in FIG. 1, the configuration of the MRI apparatus 1 is
similar to a configuration of general MRI apparatuses, including a magnet 11 configured
to generate a uniform static magnetic field in examination space where a subject is
placed, a gradient magnetic field coil 13 configured to provide a magnetic field gradient
with respect to the static magnetic field generated by the magnet 11, a probe 12 having
a transmission coil and a receiving coil, the transmission coil applying a pulse-like
RF magnetic field to the subject and causing nuclear magnetic resonance to nucleus
of atoms constituting tissue of the subject, and the receiving coil receiving a nuclear
magnetic resonance signal generated from the subject, a receiver 14 connected to the
receiving coil, an RF magnetic field generator 15 connected with the transmission
coil, a gradient magnetic field power source 16 connected with the gradient magnetic
field coil 13, a sequencer 17 configured to control the receiver 14, the RF magnetic
field generator 15, and the gradient magnetic field power source 16 according to a
predetermined pulse sequence, and a computer 200. The above-described elements excluding
the computer 200 are collectively referred to as a measurement unit 10.
[0015] The nuclear magnetic resonance signals received by the receiver 14 of the measurement
unit 10 are digitized and passed to the computer 200 as measurement data.
[0016] Structures, functions, and others of each part constituting the measurement unit
10 are similar to those in a publicly known MRI apparatus, and the present invention
can be applied to various publicly known MRI apparatus types and elements. Thus, detailed
descriptions of the measurement unit 10 will not be provided here.
[0017] The computer 200 functions as a calculation unit 20 for performing various operations
including image generation on the measurement data of the measurement unit 10, and
as a control system to control the entire MRI apparatus. The computer 200 can be configured
by a general-purpose computer or a workstation provided with a CPU and a memory. The
computer 200 may be a computer or a workstation independent of the MRI apparatus,
capable of exchanging data with the MRI apparatus. In this case, all or a part of
the functions of the calculation unit 20 can be performed by an independent device
(image analyzer). This type of image analyzer has a receiving unit for receiving data
from the MRI apparatus, and implements an image analysis function similar to that
of the computer 200, which will be described below.
[0018] It is also possible to employ hardware such as PLC (Programable logic controller),
ASIC, and FPGA, to process the measurement data, and these are embraced in the calculation
unit 20 in a broad sense.
[0019] The MRI apparatus according to the present embodiment features that the measurement
unit 10 performs measurement using a pulse sequence of diffusion-weighted imaging
(DWI), and the calculation unit 20 uses the measurement data obtained by the DWI to
calculate a fluid parameter for detecting an abnormality in a flow of fluid such as
blood or cerebrospinal fluid passing through the body of the subject. Therefore, the
computer 200 sends a command to the sequencer 17 (measurement controller) and controls
the measurement unit 10 to execute the DWI sequence under an imaging condition specified
by a user via an input device (input unit) 30 or a similar unit. Then, using the measured
data, the calculation unit 20 performs computations to calculate the fluid parameter
as described above. If necessary, a parameter image having values of the calculated
parameter as pixel values may be generated and displayed on a display device 40, and
stored in a storage medium 50 or transferred to another storage device such as a medical
information database.
[0020] FIG. 2 is one example of a functional block diagram of the calculation unit 20 that
implements the above functions. As illustrated, the calculation unit 20 comprises
a DT calculator 21 configured to process the measurement data of DWI to calculate
data including a pseudo diffusion tensor (tensor representing mixed information of
a flow velocity and diffusion), a fluid parameter calculator 23 configured to calculate
a fluid parameter using a fluid vector, and an image generator 25. The fluid parameter
calculator 23 includes a dispersion calculator 231 configured to calculate dispersion
of the flow velocity for each pixel (voxel of the DT image), a differential calculator
233 configured to calculate a differential vector of the flow velocity, using the
dispersion calculated by the dispersion calculator 231 and an estimation model of
the calculated dispersion and a distribution of the flow velocity (the shape of the
distribution in the voxel), and various-parameter calculators configured to calculate
individual fluid parameters using the differential vector. The fluid parameters include,
in addition to WSS and EL, PG (pressure gradient) and OSI (oscillatory shear index),
for instance. FIG. 2 illustrates only a WSS calculator 235 and an EL calculator 237
for calculating WSS and EL, respectively, as representative examples.
[0021] Functions of the DT calculator 21 for calculating a pseudo diffusion tensor from
the measurement data of DWI are similar to those of conventional DTI, and these functions
are well known. The MRI apparatus of the present embodiment, however, features that
the fluid parameter calculator 23 utilizes the pseudo diffusion tensor obtained by
DTI to calculate a highly accurate fluid parameter that cannot be obtained by the
PC (phase contrast) method. The fluid parameter calculation will be described specifically
in the embodiments described later. In the following, a process common to each embodiment
will be described schematically with reference to FIG. 3.
[0022] Initially, under the control of the sequencer 17, the measurement unit 10 executes
a pulse sequence of DWI (diffusion-weighted imaging) and collects measurement data
(S1). An EPI (echo planar imaging) sequence is generally used as the pulse sequence
of DWI, but other pulse sequences such as multi-shot EPI and SS (single shot) FSE
may also be employed. FIG. 4 illustrates a typical pulse sequence of DWI. In the figure,
the reference numerals 401 and 403 indicate RF pulses, 402 and 404 indicate slice
gradient (Gs), the reference numeral 405 indicates phase-encoded gradient (Gp), 406
indicates readout gradient (Gr), and 407 indicates NMR signals.
[0023] As illustrated, the pulse sequence of DWI features that gradient magnetic field pulses
(MPG pulses) 408 and 409 that promote phase diffusion of fluid, are applied before
and after applying the 180-degree RF pulse 403 that reverses magnetization excited
by the exciting RF pulse 401. Differentiating the intensity between the MPG pulses
408 and 409 causes phase dispersion corresponding to a difference in velocity of the
fluid in the voxel (velocity dispersion), resulting in reduction of signal intensity
of the voxel. In other words, this reduction in signal intensity can provide information
on the velocity dispersion (pseudo diffusion) of the fluid in the voxel. That is,
in the case where fluid is targeted, it is possible to obtain information of flow
velocity dispersion by DWI. An indicator of the intensity of the MPG pulse is called
b-value. When obtaining fluid parameters for the fluid at high velocity, a relatively
low b-value is preferable. The b-value may be set in advance as multiple b-values
within a predetermined range, or the user can set a specific b-value.
[0024] In addition, varying the axis along which the MPG pulse is applied enables obtainment
of information regarding anisotropy of diffusion and pseudo diffusion. FIG. 4 illustrates
an example where the MPG pulses are applied in the readout direction (Gr-axis). The
diffusion tensor imaging (DTI) requires, however, application of MPG signals in six
or more directions in order to calculate DT. Thus, the measurement is performed in
the same manner as in FIG. 4 for a plurality of axes set in advance.
[0025] In the EPI sequence, phase-encoded gradient pulses 405 and reversed readout gradient
pulses 406 are applied, after one excitation RF pulse, thereby obtaining a plurality
of NMR signals 407 constituting one image. The NMR signals 407 are arranged at positions
in the k-space determined by the applied phase encoding amount and the readout gradient
magnetic field, passed to the computer 200 as digital data (measurement data), and
in the computer 200, the calculation unit 20 performs various operations.
[0026] The calculation unit 20 calculates a diffusion tensor for each voxel (each pixel)
first in the DT calculator 21 (S2).
[0027] Though a method for calculating the diffusion tensor DT is well known, it will be
described briefly in the following. The diffusion tensor DT can be determined by obtaining
the slope of the corresponding straight line expressed by the following Equation 1,
from the signal intensity of multiple DWI taken by varying b-vector, and the diffusion
tensor DT is expressed by a matrix of 3 × 3.
(Equation 1)

where Si is the signal intensity obtained with a predetermined b-vector, b is the
absolute value of the b-vector, Gi is a unit vector representing an application direction
of the gradient magnetic field of the b-vector. It is to be noted that there is also
a method of expression where the b-value is a multi-dimensional numerical value, that
is, synonymous with the b-vector.
[0028] Eigenvalues and eigenvectors can be obtained by diagonalizing this diffusion tensor
DT. This conversion into the eigenvalues and eigenvectors allows obtainment of a principal
axis of the diffusion tensor in the voxel, and the two axes perpendicular to the principal
axis. It is also possible to obtain information such as an apparent diffusion coefficient
ADC, using the eigenvector diagonal element.
[0029] The diffusion tensor is represented by an ellipsoidal model as shown in FIG. 5 (lower
side), and the shape of the model varies depending on the type of the flow in the
voxel as follows, for example; in the case the plug flow 1 that flows at the same
velocity as shown in the left end of the upper side of the FIG. 5, the model becomes
a small true spherical reflecting only molecular diffusion, in the cases of laminar
flows 2 and 3 as in the three types of laminar flows in the center, the model becomes
ellipsoidal with anisotropy, and in the case of isotopically random flow 4, the model
becomes a large true spherical shape. DTI is provided to calculate diffusion tensors
from signal values of the fluid as shown in the upper side of FIG. 5 and to obtain
images as shown in the lower side of the figure. It is impossible, however, to calculate
the fluid parameter as an indicator representing the state of the flow, directly from
DTI.
[0030] The fluid parameter calculator 23 of the present embodiment assumes on a distribution
of the flow velocity in the voxel, and calculates its dispersion and a flow velocity
differential vector, thereby enabling calculation of the fluid parameters using the
flow velocity differential vector.
[0031] Therefore, in the fluid parameter calculator 23, the dispersion calculator 231 first
calculates dispersion of the flow velocity distribution ρ using the diffusion tensor
DT of each voxel calculated by the DT calculator 21 (S3). Next, a differential value
of the flow velocity is calculated using an assumed shape of the flow velocity distribution
ρ and the calculated dispersion (S4). Next, the parameter calculators (235, 237, and
so on) individually use the differential value of the flow velocity to calculate WSS,
EL, and so on (S5).
[0032] The image generator 25 generates a display image showing the values of the calculated
parameters, together with a form image and DTI (diffusion tensor image) obtained by
DWI (S6). FIG. 6 shows an example of the DTI being displayed. A sagittal cross section
of a brain image is shown in the upper side of FIG. 6, and DTI of a portion surrounded
by a square in the brain image is shown in the lower side of the figure. As illustrated,
DTI is displayed in voxel units, and thus the wall surface through which the cerebrospinal
fluid flows is delineated. It is also possible to present or identify the normal direction
in which the wall shear stress should be calculated.
[0033] As described schematically so far, the MRI apparatus of the present embodiment can
calculate a vector differential value from the diffusion vector obtained by the DWI
measurement, using the estimated shape as the shape of the distribution of the fluid
vector in the voxel, and the use of this differential value allows accurate calculation
of the fluid parameter.
[0034] There will now be described specific embodiments of the processing according to the
calculation unit 20.
First Embodiment
[0035] In the present embodiment, the flow of fluid is assumed as a linear flow, and a rectangular
distribution is employed as a model of the distribution of the flow velocity.
[0036] The linear flow is a flow in which transport distance of the fluid is proportional
to the elapse of time. When there is applied a pair of gradient magnetic fields (MPG
pulses 408 and 409 in FIG. 4, being inverted positive and negative due to the 180°
inverting pulse 403 therebetween) for diffusing the phase of the fluid, as shown in
FIG. 7, the diffusion time τd is expressed by Equation 2 as follows:

where δ is application time of the pulse, and Δ is the time from the first pulse
to the second pulse.
[0037] The dispersion calculator 231 uses the diffusion time τd to calculate the dispersion
Cov(p) of the flow velocity distribution p(v, xi) of each voxel. Given that the tensor
is P when taking the limit as b decreases to zero, in the DT (3 × 3 matrix) calculated
by the DT calculator 21 as shown in Equation 1, it has been found that P has the relationship
with the dispersion Cov(p) of the flow velocity distribution ρ as the following equation
(Non-Patent Document 1: Equation 3).
(Equation 3)

where τd is diffusion time, D is diffusion coefficient (the same shall apply hereinafter),
and it is translated into a matrix form as follows:

[0038] Depending on the conditions, this can be simplified as follows:
- 1) When Cov(p) is sufficiently larger than D,
Equation 31 is established:

- 2) When Δ >> δ, approximation of τd = Δ is possible and thus Equation 32 is established:

[0039] The dispersion calculator 231 uses Equation 3, or either of Equations 31 and 32,
to calculate the dispersion Cov(p) of the flow velocity distribution p(v, xi) of each
voxel. When Equation 3 is used, a process of subtracting the diffusion coefficient
(tensor) D from the pseudo diffusion tensor P is performed, and for this process,
there are two methods; a method of using prior information and a method of using additional
measurement data. In the method using the prior information, the diffusion coefficient
of free water, known in advance (e.g., diffusion coefficient of free water 3 × 10^(-9)
m^2/s at a biological temperature of 37°C), is subtracted from P. As for the method
of using additional measurement data, it further includes two ways. One is a method
of measuring a plurality of P while varying τd, then fitting the measured data, thereby
simultaneously obtaining Cov(p) and D. The other is a method of using MPG made up
of a pair of bipolar pulses cancelling a velocity component, so as to measure only
D, and then subtracting D from P. The specific process for calculating the dispersion
Cov(p) is as follows. For the sake of simplicity, it will be described mainly in two
dimensions.
[0040] In the case of laminar flow (being parallel) as shown in the upper side (2) of FIG.
5, when it is assumed as the laminar flow in the x-direction according to appropriate
rotational coordinate transformation in order to provide generality, following equation
is established:

where a is a predetermined value, and VVij represents a value obtained by differentiating
the flow velocity component in the i-direction with respect to the j-direction,
and

is also established.
[0041] In the case of three dimensions, the y-direction and z-direction are indeterminate,
and thus it is necessary to determine the ratio thereof. For example, the rate of
change of Cov in the vicinity is calculated, and allocates values in the y-direction
and in the z-direction according to its rate. When phase information has already been
obtained by DTI, there may also be an approach that an average velocity of each voxel
is calculated from the phase, and allocation is performed based on the square of the
difference in velocity between neighboring voxels. The method of calculating the average
velocity of each voxel from the phase is the same as the PC method. In addition, even
when the PC method is used in combination as described later, it is also possible
to take a method such as the aforementioned method where the average velocity of each
voxel is calculated to perform allocation based on the square of the difference in
velocity between neighboring voxels. Although it is not known whether the sign is
positive or negative by the flow velocity differential vector calculated from the
normal DTI, it becomes possible to give the positive sign or the negative sign, by
applying the sign of the DTI or the sign of the PC used in combination.
[0043] In the case of three dimensions, similar to the case of laminar flow (being parallel),
the y-direction and z-direction are indeterminate, and thus the ratio thereof is to
be determined. For example, in the case where phase information is obtained by DTI
for calculating the rate of change of Cov in the vicinity and performing allocation
according to the rate, the average velocity in each voxel is calculated from the phase,
and allocation is performed based on the square of the difference in velocity between
neighboring voxels. In addition, even when the PC method is used in combination as
described later, it is also possible to employ a method such as calculating the average
velocity in each voxel and performing allocation based on the square of the difference
in velocity between neighboring voxels.
[0044] Next, the differential calculator 233 estimates a shape of the flow velocity distribution
and calculates a flow velocity differential vector using the calculated dispersion
Cov(p). Here, assuming that the shape of the flow velocity distribution ρ is a rectangular
distribution, that is, as shown in FIG. 8A, the distribution is spatially linear in
the voxel, the dispersion of the rectangular distribution and the flow velocity differential
vector VV have the relationship of the following Equation 4, and the flow velocity
differential vector VV is expressed by Equation 5.

In Equations 4 and 5, Δx is the voxel size.
[0045] The differential calculator 233 calculates the flow velocity differential vector
according to Equation 5. Here, DT measured when b is sufficiently small can be regarded
as P, so that when the DT obtained at a low b-value is substituted into Equation 5,
as P in Equation 3, Equation 5 is expressed as follows:

As shown in Equation 31, D can be ignored when P is sufficiently larger than D. Although
the sign of the calculated VV is not known, it is possible to calculate the sign-independent
fluid parameter by using VV.
[0046] The fluid parameter calculator 23 calculates various fluid parameters using thus
calculated flow velocity differential vector.
[0047] For example, as shown in FIG. 6, the WSS calculator 235 first extracts the wall surface
through which the fluid flows. For extracting the wall surface, there are considered
a method of setting a threshold to MD (mean diffusivity) of DTI, and a method of setting
a threshold to brightness, by separately measuring images emphasizing liquid, such
as MRA (MR Angiography) and T2W imaging of intensity. Then, the normal vector n for
the wall surface is calculated, and the flow velocity differential value in the normal
direction is calculated. The WSS (wall shear stress) can be calculated by the following
equation using the flow velocity differential value ∇V·n in the normal direction:
[Equation 6]

where W represents WSS, w represents the flow velocity differential value ∇V·n. µ
is the viscosity (fixed value) of the fluid (for example, µ = 0.004 Pa
∗s in the case of blood) (the same shall apply hereinafter).
[0048] The EL calculator 237 specifies a target area V and calculates an energy loss (EL)
according to the following Equation 7:
[Equation 7]

[0049] The EL calculator 237 can also use another method mathematically equivalent to the
above Equation 7. That is, each element of DTI or eigenvalues can be used directly,
thereby allowing the flow velocity differential vector to be used implicitly. For
example, Equation 7 is subjected to appropriate coordinate transformation to perform
diagonalization, and then expanded to obtain one element ∇Vi,j^2, and this element
becomes equivalent to one element Pi,j of DTI, except for its constant multiple. Here,
the constant multiple is uniquely determined by assuming a rectangular distribution
or a Gaussian distribution as the velocity distribution. Thus, EL may be calculated
from the information obtained by DTI, without obtaining the flow velocity differential
vector explicitly. FIG. 2 illustrates only the WSS calculator and the EL calculator,
but as the fluid parameter, PG (pressure gradient) with respect to the direction n
specified by the user may be calculated. A method of calculating the PG is expressed
by ∇V·n.
[0050] The fluid parameters thus calculated are presented to the user such as displaying
on the display device 40 together with the DTI shown in FIG. 6. This allows the user
to see indicators regarding fluid abnormality along with DTI.
[0051] According to the present embodiment, the DTI data (pseudo diffusion tensor) and the
estimation model for the flow velocity distribution of fluid are utilized, thereby
obtaining the differential vector of the flow velocity, and it is possible to calculate
the fluid parameters using the differential vector. Here, since the dispersion of
the flow velocity distribution for calculating the differential vector can be directly
measured by DTI, it is less susceptible to spatial resolution, unlike the PC method.
Therefore, accuracy can be improved if the spatial resolution is the same as the other
(e.g. PC method), and it is also possible to reduce the measurement time because the
spatial resolution can be lowered.
First Modification of First Embodiment
[0052] In the first embodiment described above, there has been described the case where
WSS and EL are used as the fluid parameters. In the case where motion gated imaging
is performed at the time of DWI measurement and information regarding the motion has
already been obtained, this information is added to enable calculation of another
fluid parameter.
[0053] The motion gated imaging includes, as is well known, a (peripheral) cardiac gated
imaging or ECG (electrocardiogram) gated imaging for performing measurement in accordance
with heart beating or electrocardiogram, respiratory gated imaging in accordance with
respiration, and further, there is a gated imaging that uses timing of both motions.
The present embodiment is applicable to any of the gated imaging methods. As methods
of the gated imaging, there are a measuring method using a gating signal (synchronizing
signal) as a trigger, and a retrospective analysis method that uses gating signals
to perform ex post analysis on the data continuously measured. As long as the gating
signal information can be obtained, the method is not particularly limited.
[0054] The fluid parameters using the gating signal include, for example, TAWSS (time-averaged
WSS) or OSI (oscillatory shear index). TAWSS can be calculated according to Equation
8 where W(t) is the WSS calculated at each time phase:
[Equation 8]

[0055] In addition, OSI can also be calculated from the following Equation 9:
[Equation 9]

Second Modification of First Embodiment
[0056] In the first embodiment, the estimation model of the distribution of the flow velocity
is provided as a rectangular distribution, but the estimation model is not limited
to the rectangular distribution. The distribution may be deformed in consideration
of the shape and size of an organ through which the fluid flows. By changing the relational
expression representing the distribution of the flow velocity, the fluid parameters
can be calculated in the same manner as in the first embodiment.
[0057] As an example, there will be described a case where a normal distribution as shown
in FIG. 8B is used. When the flow velocity probability density function p(v) is approximated
by the normal distribution (rounded down at ±3σ) and it is assumed to be spatially
linearly distributed in the voxel, the dispersion and the flow velocity differential
of this distribution have the following relation:

where Δx is the voxel size.
[0058] Thus, the above-described Equation 5 becomes the following Equation 52:

Equation 52 becomes the following Equation 53, using P measured by DTI (DT when b
is sufficiently small) as in the case of the rectangular distribution:

Accordingly, a differential value VV can be calculated. Also in this modification,
D may be ignored when P is sufficiently larger than D.
[0059] Thereafter, the fluid parameters such as WSS and EL are calculated using the obtained
differential vector in the same manner as in the first embodiment.
Third Modification of First Embodiment
[0060] In this modification, the pulse sequence itself of the diffusion-weighted imaging
is utilized to obtain phase contrast (velocity-dependent phase shift), and the flow
velocity determined from the phase contrast is used in combination with or as an alternative
to DTI of low b-value.
[0061] That is, the measurement unit 10 executes the pulse sequence of DWI in the same manner
as in the first embodiment and acquires the measurement data of complex number values.
The calculation unit 20 uses the phase information of the measurement data of the
complex number values to calculate an average flow velocity of the fluid in each voxel
within the examination target. The fluid parameter calculator 23 uses the pseudo diffusion
tensor calculated by the DT calculator 21, the flow velocity calculated from the phase
contrast, and the estimation model of the flow velocity distribution of the fluid,
to calculate the flow velocity differential vector VV. Specifically, there are two
methods for this calculation.
[0062] One of the two methods is to determine a direction ratio of the flow velocity differential
vector, which becomes indeterminate when using only the pseudo diffusion tensor as
described above, based on a difference relative to surrounding voxels, calculated
from the flow velocity for each voxel obtained from the phase contrast. For example,
the direction ratio is determined by the square of the difference in flow velocity.
The other method uses the flow velocity obtained from the phase contrast, assuming
that the difference from the surrounding voxels is VVP and the flow velocity differential
vector obtained from the pseudo diffusion tensor by the above method is VVD, to obtain
a mean or a weighted average of VVP and VVD, or select either of them according to
a threshold of the flow velocity determined by the phase contrast. The latter method
will be described in detail in the third embodiment where the measurement for the
phase contrast is used in combination.
[0063] Similar to the first embodiment, the fluid parameters are calculated using the flow
velocity differential vector in the subsequent steps.
Second Embodiment
[0064] In the first embodiment, a differential vector of the flow velocity is calculated,
assuming that the flow is a linear flow. In the present embodiment, there are calculated
fluid parameters of a complex flow that is intermediate between the linear flow and
the diffusion. As shown in FIG. 9, a flow where the linear flow is mixed with the
diffusion is generated, for example, when there is a vortex in the voxel, or when
the flow is complicatedly bent. In this case, transport capacity is reduced, and the
transport distance is not proportional to time.
[0065] In the present embodiment, as in the case of abnormal diffusion, an index α for modeling
the time change is used to calculate the α power of the diffusion time (τd) "τd
α" (0 ≤ α ≤ 1) and the dispersion Cov(p) according to the following Equation 33.

[0066] Here, α = 0 means diffusion, and α = 1 means linear flow.
[0067] As in the case of the first embodiment or the modification thereof, the differential
VV is calculated using the dispersion calculated on the basis of Equation 33, further
the fluid parameters are calculated, and in the differential calculation, a rectangular
shape or a Gaussian shape can be used as the estimated shape of the flow velocity
distribution.
[0068] The measurement and calculation methods of the index α will be described. FIG. 10
is a functional block diagram of the fluid parameter calculator in this case. As illustrated,
in the present embodiment, a diffusion index calculator 239 is added. Other elements
are the same as those in FIG. 2 and these elements are denoted by the same reference
numerals.
[0069] As one of the methods to estimate the diffusion element (index) α, the measurement
is performed multiple times (e.g., three times) with different intervals of diffusion
gradient (MPG: motion probing gradient). Assuming that the first interval is Δ1, the
second interval is Δ2, and the third interval is Δ3 ..., when the flow velocity of
the fluid determined in each interval changes linearly with respect to the interval,
the flow can be regarded as a linear flow, and α is calculated based on deviations
from the linearity.
[0070] Subsequent processes are the same as in the first embodiment except that Equation
3 is replaced with Equation 33. In the present embodiment, there has been described
the case where the index α is obtained by measurement. It is also possible to obtain
the fluid parameters by fixing the index α as a biological model. Typically, fixing
the index α as α = 1 provides a model of the linear flow, and fixing the index α as
α = 0 provides a model of diffusion only.
Third Embodiment
[0071] Diffusion tensor imaging is generally known to be able to obtain a highly accurate
DTI value (pseudo diffusion tensor) for a fluid at a low velocity. As for the fluid
at a high flow velocity, the signal completely attenuates due to pseudo-diffusion,
and thus the accuracy is reduced. On the other hand, in the PC method, when the flow
velocity is low, the accuracy is reduced because the phase difference obtained by
the measurement is small.
[0072] In the present embodiment, utilizing the characteristics of both, the two types
of measurement are performed alternatively or combined, thereby improving the accuracy
of the fluid parameter calculation in a wide range of velocity.
[0073] FIG. 11 is a functional block diagram showing the calculation unit of the present
embodiment. In FIG. 11, elements having the same functions as those in FIG. 2 are
denoted by the same reference numerals, and redundant description thereof will not
be given.
[0074] As shown in FIG. 11, in addition to the fluid parameter calculator 23 using the DTI,
the calculation unit 20 of the present embodiment is provided with a second fluid
parameter calculator 23B for calculating the fluid parameters using the measurement
data obtained by the PC method. It may also be configured to include a parameter integration
unit 29 that integrates the results of the two fluid parameter calculators.
[0075] The second fluid parameter calculator 23B includes, although not illustrated, a flow
velocity calculator 231B for calculating the flow velocity using the measurement data
of the PC method, and a differential calculator 233B for calculating the differential
vector of the flow velocity, and so on. The differential calculator 233B calculates
the fluid parameters such as WSS and EL according to the above-described equations
such as Equations 6 and 7, using the calculated differential vector of the flow velocity.
[0076] Which processing is performed, the processing by the fluid parameter calculator 23
or the processing of the second fluid parameter calculator 23B, may be selected by
setting in advance a predetermined threshold value for the fluid velocity, or set
in advance according to the type of the fluid of interest, such as blood or cerebrospinal
fluid, arterial flow or vein flow, and so on. It is also possible that selection is
made according to a user via an interface such as GUI, shown on the display device
40 and then, the selected result is set in the calculation unit 20.
[0077] FIGs. 12A and 12B illustrate examples of the GUI described above. In the example
shown in FIGs. 12A and 12B, in the screen 1200 for setting the imaging conditions,
calculation of the fluid parameters is already set as a default to be performed, or
when accepting a user's instruction that the calculation of the fluid parameters is
"required", there is displayed a GUI for selectively receiving information such as
a site of the fluid, a type of the fluid, and the velocity of the fluid for calculating
the fluid parameter according to the PC method.
[0078] When a predetermined flow velocity is set using this GUI, for example, the measurement
unit 10 performs imaging of the PC method instead of the DWI imaging when the flow
velocity is higher than the predetermined flow velocity, whereas the DWI imaging is
performed when the provided flow velocity is lower than the predetermined flow velocity.
[0079] When the measurement unit 10 performs imaging by the PC method, the second fluid
parameter calculator 23B calculates the fluid parameters by a conventional method
(e.g., techniques described in Patent Document 1). On the other hand, when the measurement
unit 10 performs the DWI imaging, in the same manner as the first and second embodiments,
the DT calculator 21 creates DTI, and the fluid parameter calculator 23 calculates
the fluid parameters using the information of DTI.
[0080] There has been described the example that the DWI imaging or the PC imaging is performed
selectively. Both imaging methods may be used in combination, adding weight to the
obtained result. In that case, the measurement unit 10 executes the DWI imaging and
the PC imaging separately. The order of the imaging is not limited. The calculation
unit 20 passes the data obtained by both imaging, respectively to the DT calculator
21 and to the second fluid parameter calculator 23B, and the processing by the fluid
parameter calculator 23 and the processing by the second fluid parameter calculator
23B are performed in parallel.
[0081] In calculating the fluid parameter, the sign of positive or negative is not known
by the flow velocity differential vector calculated from usual DTI, but the sign of
PC is applied. Thus, it is also possible to obtain the fluid parameters requiring
positive and negative signs for calculation.
[0082] Thereafter, the parameter integration unit 29 weights and adds the processed results
of both the fluid parameter calculators 23 and 23B as shown in the following equation:

In the equation, WSS
DW is the calculation result of the fluid parameter calculator 23, WSS
PC is the calculation result of the fluid parameter calculator 23B. Here, WSS is shown
as an example, and this calculation is applicable to other fluid parameters.
[0083] Weights ω1, co2 may be constants, such as 0.5, 0.5, regardless of the type and velocity
of the fluid. Alternatively, it is also possible to determine a predetermined weight
in advance according to the type and velocity of the fluid, and to employ a weight
in association with the type or the velocity of the fluid entered by a user through
the GUI, or a weight in association with the fluid velocity calculated by the flow
velocity calculator 231B.
[0084] According to the present embodiment, as a measurement method of basic data for calculating
the fluid parameters, two imaging methods with different features are employed, and
combining the calculation results of the two imaging methods enables calculation of
fluid parameters with high accuracy, in response to a wide range of velocity and sites.
1. A magnetic resonance imaging apparatus comprising,
a measurement unit (10) configured to execute a pulse sequence of diffusion-weighted
imaging including an MPG pulse (408, 409) to acquire measurement data, and
a calculation unit (20) configured to calculate a pseudo diffusion tensor of fluid
within an examination target, using the measurement data acquired by the measurement
unit (10), wherein
the calculation unit (20) includes a fluid parameter calculator (23) configured to
calculate a fluid parameter other than the pseudo diffusion tensor, using the pseudo
diffusion tensor and an estimation model of an intra-voxel distribution of a flow
velocity.
2. The magnetic resonance imaging apparatus according to claim 1, wherein the fluid parameter
calculator (23) calculates dispersion of a flow velocity distribution using the pseudo
diffusion tensor, calculates a flow velocity differential vector using the dispersion
of the flow velocity distribution thus calculated and the estimation model, and calculates
the fluid parameter based on the flow velocity differential vector.
3. The magnetic resonance imaging apparatus according to claim 1 or 2, wherein the fluid
parameter calculated by the fluid parameter calculator (23) includes at least one
of the following: wall shear stress (WSS), kinetic energy (KE) or energy loss (EL),
oscillatory shear index (OSI), and pressure gradient (PG).
4. The magnetic resonance imaging apparatus according to any preceding claim, wherein
the calculation unit (20) comprises an image generator (25) configured to generate
an image having values of the fluid parameter as pixel values, and to display the
image on a display device (40).
5. The magnetic resonance imaging apparatus according to any preceding claim, wherein
the estimation model used by the fluid parameter calculator (23) has a flow velocity
distribution being a rectangular distribution or a Gaussian distribution.
6. The magnetic resonance imaging apparatus according to any preceding claim, wherein
the estimation model includes an index indicating deviations from linearity in fluid,
and
the calculation unit (20) calculates the index from the pseudo diffusion tensor.
7. The magnetic resonance imaging apparatus according to claim 6, wherein the calculation
unit (20) calculates the index from the pseudo diffusion tensors calculated at multiple
diffusion times.
8. The magnetic resonance imaging apparatus according to any preceding claim, wherein
the measurement unit (10) collects the measurement data by performing the diffusion-weighted
imaging in sync with a periodic motion of the examination target, and
the fluid parameter calculator (23) calculates the fluid parameter with information
of the periodic motion.
9. The magnetic resonance imaging apparatus according to any preceding claim, wherein
the measurement unit (10) is configured to execute the pulse sequence of the diffusion-weighted
imaging to acquire measurement data of complex number values,
the calculation unit (20) calculates the flow velocity of fluid within the examination
target, using phase information of the measurement data of the complex number values,
and
the fluid parameter calculator (23) calculates the fluid parameter, using the pseudo
diffusion tensor, the flow velocity, and the estimation model.
10. The magnetic resonance imaging apparatus according to any preceding claim, wherein
the measurement unit (10) performs a first measurement using the pulse sequence of
the diffusion-weighted imaging and a second measurement using the pulse sequence of
a phase contrast method, and
the calculation unit (20) further comprises a second fluid parameter calculator (23B)
configured to calculate the fluid parameter, using the measurement data obtained by
the second measurement.
11. The magnetic resonance imaging apparatus according to claim 10, wherein the calculation
unit (20) further comprises a parameter integration unit (29) configured to integrate
the fluid parameter calculated by the fluid parameter calculator (23), with the fluid
parameter calculated by the second fluid parameter calculator (23B).
12. The magnetic resonance imaging apparatus according to claim 10 or 11, further comprising,
an input unit (30) configured to receive a condition regarding the fluid as a measurement
target, wherein
the measurement unit (10) selectively performs the pulse sequence of the diffusion-weighted
imaging and the pulse sequence of the phase contrast method, according to the condition
received by the input unit (30).
13. An image analyzer comprising,
a receiving unit (14) configured to receive measurement data measured in a magnetic
resonance imaging apparatus or a value of a pseudo diffusion tensor calculated from
the measurement data, and
a calculation unit (20) configured to calculate a fluid parameter, using the measurement
data or the value of the pseudo diffusion tensor received by the receiving unit (14),
wherein
the calculation unit (20) includes a fluid parameter calculator (23) configured to
calculate the fluid parameter as an indicator representing a flow characteristic of
fluid, using the pseudo diffusion tensor and an estimation model of a flow velocity
distribution.
14. The image analyzer according to claim 13, wherein the fluid parameter calculator (23)
further comprises:
a dispersion calculator (231) configured to calculate dispersion of the flow velocity
distribution from the pseudo diffusion tensor, and
a differential calculator (233) configured to calculate a flow velocity differential
vector, using the dispersion of the flow velocity distribution thus calculated and
the estimation model.
15. A fluid analysis method using a diffusion tensor image of an examination target containing
fluid, the diffusion tensor image being acquired by a magnetic resonance imaging apparatus,
comprising,
calculating dispersion of a flow velocity distribution of the fluid, using the diffusion
tensor image,
calculating a differential value of a flow velocity, using the dispersion and a distribution
shape of intra-voxel flow velocity, and
calculating a fluid parameter indicating a flow characteristic of the fluid, using
the differential value.